Patents by Inventor Sriram RAJKUMAR

Sriram RAJKUMAR has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 11886180
    Abstract: The present disclosure describes a method, system, and computer readable medium for facilitating predictive maintenance of testing machine using a combination of deep learning. The method comprises performing receiving plurality of tested data of a plurality of products being tested by the testing machine. The method further comprises applying a predictive model, having predictive model parameters, upon the plurality of tested data to predict a plurality of future test data corresponding to the plurality of products. The method further comprises determine a deviation between the plurality of tested data and the plurality of future test data, wherein the deviation indicates fault in the testing machine. The method further comprises determine a fault level of the testing machine by comparing the deviation with a predefined threshold and determining, during run-time, the maintenance required for the testing machine based on the fault level.
    Type: Grant
    Filed: March 2, 2022
    Date of Patent: January 30, 2024
    Assignee: CLARITRICS INC.
    Inventors: Praveen Kumar Suresh, Sriram Rajkumar, Sudarsun Santhiappan
  • Publication number: 20230297098
    Abstract: The present disclosure describes a method, apparatus, and computer readable medium for Surface Mount Technology (SMT). The system comprising a Data Integration (DI) platform configured to collate data from one or more units in an assembly line, an Artificial Intelligence (AI) platform configured to process the collated data, using one or more machine learning techniques, to generate predictive and preventive analysis for the one or more units present in the assembly line. The system further disclose a Digital Twin Simulation (DTS) platform configured to simulate an exact replica of all the units present in the assembly line, provide visual representation, allow the one or more operators in the assembly line to take at least one action and provide the at least one action taken by the one or more operators in the assembly line as feedback signal to AI platform to improve prediction rate of said system.
    Type: Application
    Filed: March 15, 2022
    Publication date: September 21, 2023
    Applicant: CLARITRICS INC. d.b.a BUDDI AI
    Inventors: Ram SWAMINATHAN, Harinath KRISHNAMOORTHY, Mohammed SHARAFATH, Praveen Kumar SURESH, Sriram RAJKUMAR, Sudarsun SANTHIAPPAN
  • Publication number: 20230282322
    Abstract: The present disclosure describes a method, apparatus, and computer readable medium for anonymizing medical records using a combination of deep learning and smart templatization. The method comprises performing tokenization on an input medical record comprising one or more sentences to generate tokenized data and generating one or more templatized sentences by performing templatization on the tokenized data, where performing the templatization comprises replacing one or more known patterns in the tokenized data with predefined patterns. The method further comprises identifying one or more PHI sentences from the templatized sentences using a trained classifier, each PHI sentence may comprise one or more PHI. The method further comprises identifying the PHI in the medical record by processing the identified PHI sentences using a trained model and generating an anonymized medical record by anonymizing the identified PHI in the input medical record.
    Type: Application
    Filed: March 2, 2022
    Publication date: September 7, 2023
    Applicant: CLARITRICS INC. d.b.a BUDDI AI
    Inventors: Sriram RAJKUMAR, Sudarsun SANTHIAPPAN
  • Publication number: 20230280737
    Abstract: The present disclosure describes a method, system, and computer readable medium for facilitating predictive maintenance of testing machine using a combination of deep learning. The method comprises performing receiving plurality of tested data of a plurality of products being tested by the testing machine. The method further comprises applying a predictive model, having predictive model parameters, upon the plurality of tested data to predict a plurality of future test data corresponding to the plurality of products. The method further comprises determine a deviation between the plurality of tested data and the plurality of future test data, wherein the deviation indicates fault in the testing machine. The method further comprises determine a fault level of the testing machine by comparing the deviation with a predefined threshold and determining, during run-time, the maintenance required for the testing machine based on the fault level.
    Type: Application
    Filed: March 2, 2022
    Publication date: September 7, 2023
    Applicant: CLARITRICS INC. d.b.a BUDDI AI
    Inventors: Praveen Kumar SURESH, Sriram RAJKUMAR, Sudarsun SANTHIAPPAN